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Workshop on
World Programme for the Census of Agriculture 2020
Amman, Jordan
16-19 May 2016
Master Sampling Frame: What? Why? How? & pilot tests
Technical Session 2
Mohamed Barre
FAO RNE
Introduction
As indicated in the Global Strategy’s foundational document, the
implementation of the Second Pillar (integration of agriculture into the national
statistical system) “begins with the development of a master sampling frame
for agriculture that will be the foundation for all data collection based on
sample surveys”
Little guidance is currently available on building an MSF for agricultural
surveys in different country contexts.
2
Introduction
The GS aims at filling this gap with the development of guidelines and tools that are tailored to
the specific situation of each country, taking into account both the structural characteristics of
the agricultural sector and the level of development of the national statistical system
Two important guidelines on MSF:
1. Handbook on Master Sampling Frames for Agricultural Statistics (published in 2015)
2. Master Sampling Frame for Fisheries and Aquaculture Statistics (on going)
3
General consideration
A master sampling frame is a sampling frame that provides the basis for all data collections
through sample surveys and censuses in a certain sector
It is used to select samples either for multiple surveys, each with different content (as
opposed to building an ad-hoc sampling frame for each survey), or for use in different
rounds of a continuing or periodic survey
5
MSF in Agricultural sector
For the agricultural sector, MSF is a listing of sampling units that, when associated with
reporting units, provides complete coverage of the populations of interest, as well as a
linking of the agricultural holding to the household and land dimensions.
In the context of the Global Strategy, the MSF is a tool that combines information on the
socio-economic characteristics of the household and on the agricultural characteristics of the
holding, including information on land area.
The MSF should therefore allow the selection of samples for both household based surveys
and holding based surveys.
6
MSF in Agricultural sector (cont’d)
Broadly speaking, In the context of the Global Strategy, the MSF will:
• ensure that information on the three basic statistical units - land parcel, household and
holding- are interlinked, thus allowing to simultaneously provide consistent and
integrated statistics on the environmental, social and economic dimensions of agriculture
• become survey basis (selection of probability based samples of holdings and households)
for data collections for agricultural statistics for all providers in the national statistical
system
• be made available to all institutions in the national statistical system for data collection
7
Data integration: Issues
1) Data integration issues in current statistical systems:
• In many countries, data are collected by sector using different sampling frames and
surveys.
This division of data by sector does not allow for cross-sector analysis or the ability to
measure the impact of actions in one sector on other sectors.
9
Data integration: Issues (cont’d)
2) Surveys on crop production are often carried out separately from livestock
production surveys, using different sampling frames.
This does not allow the analysis of holdings characteristics that produce both crops
and livestock or for comparing them to holdings that specialize in either crops or
livestock.
10
Data integration: Issues (cont’d)
3) Household surveys are conducted without coordination with production surveys,
using different sampling frames and often with sample sizes too small for the data to
inform on the rural or farm sectors.
These data are also not usually combined with other data sources into a common
database for access by data users.
11
Data integration: Issues (cont’d)
4) There are usually several national organizations that have responsibility for data
collection, analysis and reporting on agriculture, fishery and forestry data without
coordination. The national statistical agency may collect the agricultural census
while the ministry of agriculture may produce annual production data
Data are kept separate and often producing conflicting results, which confuses
issues and data users.
12
Data integration & MSF
The main goal of the development of a master sampling frame is an integrated Agricultural
Statistics Framework in order to:
avoid duplication of efforts
reduce statistics discrepancies
connect various aspects of the sector
allow the analysis of sampling units from different viewpoints
have a better understanding of the sector.
The master sampling frame is one of the main tools for establishing a closer link between
results from different statistical processes and statistical units
13
Cost effectiveness
The MSF may be cost effective when it covers several surveys. The costs of selecting the
master sample units will be shared by all the surveys using the MS. The sample selection
costs per survey will thus be reduced.
Much greater cost savings are realized when the costs for preparing maps and
subsampling frames of holdings units within master sample units are shared by the
surveys.
14
Cost effectiveness (cont’d)
Current technologies, in particular the availability of remote sensing, the ability of
geographic information systems to overlay and integrate efficiently different layers of
geographic information, have completely transformed the way of building master
sampling frames for the agricultural sector and considerably reduced the cost and the
time needed.
15
Planning and coordination facilitation
The MSF also facilitates the planning and coordination of regular surveys in a survey
program:
Gain in interviewers’ recruitment
Reduced time for the interviewer to find the households.
Reduced time for the organization and starting of surveys.
16
MSF building approaches
Depending on country capacity and circumstances, the GS proposes five different
approaches for establishing a MSF:
a) List frame based on the population census;
b) List frame based on the agricultural census;
c) List frame based on administrative data (e.g. business register of farms) ;
d) Area frame (based on remote sensing; aerial photos; etc.)
e) Mixed list and area frame (Multiple frame approach)
18
Population Census as Sample Frame Base
Need to identify households with agricultural holdings in population census
Need to add non-household holdings for a complete agricultural frame
While it is possible to identify household holding agricultural production activities,
measures of size are nearly impossible
More :
1. Guidelines for Linking Population and Housing Censuses with Agricultural
Censuses with selected country practices (FAO, UNFPA 2012)
2. Handbook on Master Sampling Frames for Agricultural Statistics (Global
strategy, 2015)
19
Agricultural Census as Sample Frame Base
Assumes complete coverage of household holdings, commercial farms and subsistence farming
households
Must georeference land to farm headquarters or households, basically creating an area sample frame
Register or frame updates are necessary between censuses
More : Handbook on Master Sampling Frames for Agricultural Statistics (Global strategy, 2015)
20
Administrative Data as Sample Frame Base
Where reliable administrative data is available it can be used as the basis for an
agricultural register
Need to include small household and subsistence holdings data
Georeference farms or households to census enumeration areas, basically creating
area sample frame
More : Handbook on Master Sampling Frames for Agricultural Statistics (Global
strategy, 2015)
21
Area Frame as Master Sample Frame
Use georeferenced satellite imagery to categorize land by use
Add census enumeration and administrative boundary layer
Select areas for inclusion in samples
Develop register of farms
More : Handbook on Master Sampling Frames for Agricultural Statistics (Global
strategy, 2015)
22
Multiple frame approach
Multiple frame sampling involves the joint use of two or more sample frames. For
agricultural purposes, this usually involves the joint use of area and list frames.
The list and area frames can be developed independently, and samples can be selected
separately from each frame, in single or in multiple stages.
Two main assumptions: Completeness (Every holding in the population belongs to at least
one frame), Identifiability (For any sample unit from any frame, it is possible to determine
whether the reporting unit belongs to any other frame).
Specific statistical techniques are to be considered for estimations
More : Handbook on Master Sampling Frames for Agricultural Statistics (Global strategy,
2015) 24
Multiple frame approach (Example: dual
frame) Two overlapping frames that form three domains in a general dual-frame design
𝒀 = 𝒀𝒂 + 𝒀𝒃 + 𝒀𝒂𝒃
25
Main steps to build an MSF
Handbook on Master Sampling Frames for Agricultural
Statistics (Global strategy, 2015)
26
8 steps to identify the suitable frame
1. Conduct a thorough review of the statistical methods and operations, including
censuses and surveys, used for agriculture in your country.
Where relevant, separate reviews should undertaken by/for the relevant National
Statistical Office and by/for the statistical unit within the Ministry of Agriculture.
Both the methodology used and the data provided must be reviewed.
27
8 steps to identify the suitable frame
(cont’d)
2. Review other censuses and surveys in your country with a focus on sample frames.
Examples are the population census, national household surveys, and price collections
for the Consumer Price Index.
3. Review administrative data and other possible sources for building and/or updating a list
of farms or agricultural holders.
4. Obtain information on census or survey systems in countries of similar size, form of
agriculture, and capabilities.
28
8 steps to identify the suitable frame
(cont’d)
5. Compare findings from steps 1, 2, 3 and 4 above with the methods described in this
Handbook to find out where similar methods are used and build off their experiences.
6. Follow the guidelines on obtaining background information on your country’s
requirements for data on agriculture, as described in Chapter 2 of the Handbook. This
information should then be contrasted with data currently available.
29
8 steps to identify the suitable frame
(cont’d)
7. Identify overlaps in the statistical systems where resources can be combined to build
an MSF.
8. Determine the requirements for geo-referencing agricultural and/or population
census EAs. Identify how this can assist other parties in the national statistical
system.
Following the 8 steps, there should be enough information to make a first recommendation on the
choice of frame (list or area) or on a form of multiple frame sampling.
30
Final choice of MSF
Seek a peer review of the frame selection process; revise as necessary.
Begin implementation in a portion of the country.
The final choice of MSF should take into consideration not only the costs of frame
development and data collection, but also the costs required for maintenance and
updating.
The proposals should be realistic and reflect national capabilities, and include an
indicative budget and timeframe for implementation.
An effective MSF will facilitate the integration of agriculture into the national statistical
system and will benefit the entire statistical system.31
Limitations of MSF
It always represents a compromise among different design requirements
Savings will be small if Master sample can not be extended to lower stages of sampling.
Useful only if it is used more than once and for more than one survey
May not be suitable for Surveys aimed at local level or unevenly distributed and rare
population sub-groups
32
Countries experience
BRAZIL: Use of list frame and area frame to build a Master Sampling Frame.
CHINA: Use of area frame to build a master sampling frame.
ETHIOPIA: Use of list frame and area frame to build a Master Sampling Frame.
EU MARS PROJECT: Use of square segments to build an area frame for agricultural surveys.
EUROSTAT LAND USE AND COVER SURVEY (LUCAS):Use of point frame to build an area
frame for agricultural surveys
GUATEMALA: Building an area sampling frame for agricultural surveys
LESOTHO: Use of list frame to build a Master Sampling Frame
THE UNITED STATES: Use of area frame for agricultural surveys
More details on these experiences and lessons learned on Handbook on Master Sampling Frames for
Agricultural Statistics (Global strategy, 2015)
33
References
Carfagna E. 2013. «Using Satellite Imagery and geo-referencing technology for building a master sampling frame» de 59th World Statistics Congress, Hong Kong
Global Strategy to improve Agricultural and Rural Statistics. 2014. Technical Report on Identifying the Most Appropriate Sampling Frame for Specific Landscape Types. Global Strategy Technical Report. Global Strategy Publication, Rome.
Global Strategy to improve Agricultural and Rural Statistics. 2015a. Guidelines to Enhance Fisheries and Aquaculture Statistics through a Census Framework, FAO Publication, Rome.
Global Strategy to improve Agricultural and Rural Statistics. 2015b. Handbook on Master Sampling Frames for Agricultural Statistics. Global Strategy Publication, Rome.
Keita, N. Gennari, P. 2012. Building a Master Sampling Frame by Linking the Population and Housing Census with the Agricultural Census. Statistical Journal of the IAOS, vol. 30, no. 1, pp. 21-27, 2014
Keita, N. 2004. Improving Cost-Effectiveness and Relevance of Agricultural Censuses in Africa: Linking Population and Agricultural Censuses. FAO Publication: Rome. Available at: http://www.siea.sagarpa.gob.mx/mexsai/trabajos/t32.pdf.
Pettersson, H. 2005. Design of master sampling frames and master samples for household surveys in developing countries in Household Sample Surveys in Developing and Transition Countries, Chap V, pp 71-94. United Nations, ST/ESA/STAT/SER.F/96
Turner, Anthony G. 2003. Sampling frames and master samples. ESA/STAT/AC.93/3 United Nations Statistics Division
Vogel, F. Carletto G. 2012 «Master Sampling Frames for Agricultural and Rural Statistics,» de Global strategy to improve agricultural and rural statistics. High Level Stakeholders Meeting on the Global Strategy - From Plan to Action. Master SamplingFrames (MSF) for Agricultural and Rural Statistics, Rome, 2012.
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